Global μ-stability of impulsive reaction–diffusion neural networks with unbounded time-varying delays and bounded continuously distributed delays

作者: Huimin Cui , Jin Guo , Jianxin Feng , Tingfeng Wang

DOI: 10.1016/J.NEUCOM.2015.01.044

关键词:

摘要: Abstract This paper investigates the global μ-stability for impulsive cellular neural networks with reaction–diffusion terms and mixed delays, where delays consist of unbounded time-varying bounded continuously distributed delays. The model under consideration is more general than those investigated in most existing literature. By establishing a novel Lyapunov–Krasovskii functional employing delay differential inequality initial conditions, boundary conditions LMI, we obtain two concise sufficient ensuring newly obtained criteria are concerned coefficients regional feature. However, they independent boundaries variable time Several corollaries also presented. Finally, three concrete numerical examples given to demonstrate effectiveness superiority our main results.

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